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首页> 外文期刊>Frontiers in Psychology >Comparison of Estimation Procedures for Multilevel AR(1) Models
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Comparison of Estimation Procedures for Multilevel AR(1) Models

机译:多级AR(1)模型估计程序的比较

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To estimate a time series model for multiple individuals, a multilevel model may be used. In this paper we compare two estimation methods for the autocorrelation in Multilevel AR(1) models, namely Maximum Likelihood Estimation (MLE) and Bayesian Markov Chain Monte Carlo. Furthermore, we examine the difference between modeling fixed and random individual parameters. To this end, we perform a simulation study with a fully crossed design, in which we vary the length of the time series (10 or 25), the number of individuals per sample (10 or 25), the mean of the autocorrelation (−0.6 to 0.6 inclusive, in steps of 0.3) and the standard deviation of the autocorrelation (0.25 or 0.40). We found that the random estimators of the population autocorrelation show less bias and higher power, compared to the fixed estimators. As expected, the random estimators profit strongly from a higher number of individuals, while this effect is small for the fixed estimators. The fixed estimators profit slightly more from a higher number of time points than the random estimators. When possible, random estimation is preferred to fixed estimation. The difference between MLE and Bayesian estimation is nearly negligible. The Bayesian estimation shows a smaller bias, but MLE shows a smaller variability (i.e., standard deviation of the parameter estimates). Finally, better results are found for a higher number of individuals and time points, and for a lower individual variability of the autocorrelation. The effect of the size of the autocorrelation differs between outcome measures.
机译:为了估计多个个体的时间序列模型,可以使用多级模型。在本文中,我们比较了多级AR(1)模型中自相关的两种估计方法,即最大似然估计(MLE)和贝叶斯马尔可夫链蒙特卡洛。此外,我们检查了建模固定参数和随机参数之间的差异。为此,我们使用完全交叉的设计进行了仿真研究,其中我们改变了时间序列的长度(10或25),每个样本的个体数(10或25),自相关的平均值(- 0.6至0.6(含0.3)的步长和自相关的标准偏差(0.25或0.40)。我们发现,与固定估计量相比,总体自相关的随机估计量显示出较小的偏差和较高的功效。正如预期的那样,随机估计量从大量个体中获得了巨大收益,而固定估计量的影响很小。固定估计量从更多的时间点获得的收益要比随机估计数更多。在可能的情况下,随机估计优于固定估计。 MLE和贝叶斯估计之间的差异几乎可以忽略不计。贝叶斯估计显示较小的偏差,但是MLE显示较小的可变性(即参数估计的标准偏差)。最后,对于更大数量的个体和时间点,以及更低的个体自相关性,发现了更好的结果。自相关大小的影响在结果度量之间有所不同。

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